TL;DR
This paper introduces a multi-stage 3D CNN-based CAD system for prostate cancer detection in bpMRI, utilizing attention mechanisms, clinical priors, and false positive reduction to improve accuracy and generalization over existing methods.
Contribution
It presents a novel 3D CNN model with attention and domain-specific priors that significantly outperforms state-of-the-art architectures in prostate cancer detection from bpMRI.
Findings
Achieves over 83% sensitivity at 0.5 FP per patient
Outperforms four baseline architectures in AUROC
Shows strong generalization to external datasets
Abstract
We present a multi-stage 3D computer-aided detection and diagnosis (CAD) model for automated localization of clinically significant prostate cancer (csPCa) in bi-parametric MR imaging (bpMRI). Deep attention mechanisms drive its detection network, targeting salient structures and highly discriminative feature dimensions across multiple resolutions. Its goal is to accurately identify csPCa lesions from indolent cancer and the wide range of benign pathology that can afflict the prostate gland. Simultaneously, a decoupled residual classifier is used to achieve consistent false positive reduction, without sacrificing high sensitivity or computational efficiency. In order to guide model generalization with domain-specific clinical knowledge, a probabilistic anatomical prior is used to encode the spatial prevalence and zonal distinction of csPCa. Using a large dataset of 1950 prostate bpMRI…
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Taxonomy
MethodsUNet++
